Cognitive Dissonance, Elections, and Religion: How ... · Cognitive Dissonance, Elections, and...
Transcript of Cognitive Dissonance, Elections, and Religion: How ... · Cognitive Dissonance, Elections, and...
Cognitive Dissonance, Elections, and Religion: How
Partisanship and the Political Landscape Shape
Religious Behaviors∗
Michele Margolis
Word Count: 6,432
Abstract
How do elections affect citizens? This paper shows that elections can have an impactin an area where researchers least expect it: an individual’s religious life. Drawingon psychologists’ theory of compensatory control, I show that individuals’ reportedreligious behaviors and beliefs fluctuate along with their chosen political party’s for-tunes. Using both an originally-collected panel dataset and over-time cross-sectionaldata, I find that Democrats (Republicans) are more likely to report attending reli-gious services and praying when Republicans (Democrats) control the White House.Rates of reported religious behaviors then decline when a co-partisan is president. Theresults demonstrate political identities’ strength and ability to influence nonpoliticalbehaviors, even those thought to be stable and impervious to politics.
∗For comments, suggestions, and advice, I thank Adam Berinsky, Gabe Lenz, Charles Stewart III, Justinde Benedictis-Kessner, Roberto Carlos, James Dunham, Alfredo Gonzalez, Allison Harris, Elisha Heaps,Matt Levendusky, Chad Levinson, Krista Loose, Marc Meredith, Ethan Porter, Mike Sances, and AdamZiegfeld. An earlier version of this paper circulated under the title “Don’t Lose Control: How Partisanshipand the Political Landscape Shape Religious Behaviors. Support for this research came from the MIT’sPolitical Experiments Research Lab (PERL).
1
How do elections affect citizens? Most obviously, election results determine who wins
office and therefore formulates public policy. But, election results can also affect citizens–
especially partisans–even more directly. For instance, after a voter’s party wins an election,
she views the economy more positively (Bartels 2002; Evans and Anderson 2006), has more
trust in government (Keele 2005), and increases her spending (Gerber and Huber 2010; 2009).
In this article, I demonstrate that elections can have an impact in an area where researchers
least expect it: an individual’s religious life.
I show that partisans use religion to cope with politically-induced anxiety bred of their
party’s election losses. More specifically, I test the psychological theory of compensatory
control, which claims that when government fails to provide order and structure, people
look elsewhere to fill that void, including to religion. Using both originally-collected panel
data as well as over-time cross-sectional data, I test the hypothesis that partisans’ religious
behaviors shift when their party loses power.
This research advances both the cognitive dissonance and religion and politics literatures.
First, dissonance research within political science has largely focused on how individuals
update attitudes or behaviors, with less attention given to situations in which internal con-
sonance cannot be achieved directly. This paper shows how and why partisans use indirect
strategies to cope with negative feelings stemming from political developments. Second, the
paper challenges the axiom that core social identities, such as religion, are exogenous to
politics. Typically, researchers assume that religious identities influence politics, but that
politics does not influence citizens’ depth of religious identification. By showing that levels
of reported religiosity respond in predictable ways to the political environment, this paper
demonstrates that religion is not the fixed, immutable trait it is often portrayed to be.
Cognitive dissonance and compensatory control
Cognitive dissonance theories contend that individuals want consistency among their cog-
nitions (i.e., beliefs and behaviors). Dissonance arises when elements of cognition do not
2
fit together, motivating a person to reduce or eliminate the dissonance, “just as, for exam-
ple, the presence of hunger leads to action to reduce the hunger” (Festinger 1957, 18). A
common example of dissonance includes people who smoke despite knowing the associated
health risks. Smokers can reduce the psychological discomfort stemming from the dissonance
by downplaying the quality of research on smoking’s effects, emphasizing the innumerable
unavoidable health perils in the world, considering the potential drawbacks of quitting, and
remembering that the enjoyment of smoking is worth the risk (Festinger 1957).
Often, cognitive dissonance arises in response to events outside an individual’s control
that violate her worldview or expectations (for examples, see, Harmon-Jones et al. 2009).
Sometimes people can directly address the cognitive dissonance arising from these unwelcome
events. For example, those who undergo a grueling initiation process to join a dull group
believe that the group is more interesting than those with a moderate initiation process
(Aronson and Mills 1959). Despite being unable to resolve cognitive dissonance by changing
the group, an individual can achieve consonance by updating her beliefs about the group.
But not all scenarios lend themselves to resolving dissonance directly through attitude or
behavior accommodation. An alternative, albeit less direct, strategy for reducing cognitive
dissonance in these situations would be to reduce the negative feelings in “domains unrelated
to the dissonance-inducing event” (Randles 2015, 697).
The compensatory control theory is one such way that individuals cope with cognitive
dissonance in response to uncontrollable events (Whitson and Galinsky 2008). Unexpected
events can create internal dissonance by causing people to lose the desirable feelings of control
and order; however, individuals can reduce feelings of chaos and randomness in one arena
with increased perceptions of control from another arena. This “compensatory control” is
possible because feelings of control come from multiple sources. One source may be internal,
as when an individual believes that she controls her own destiny. Other sources may be
external. One common source of external control is God, as individuals may believe that
God has a plan for them (Jost and Banaji 1994). Another source is stable government (Jost,
3
Banaji and Nosek 2004; Norris and Inglehart 2004; Sullivan, Landau, and Rothschild 2010).
By providing services, such as clean drinking water, police and fire departments, and plowed
roads, government creates stability and structure for its citizens.
One source of control can compensate for shortcomings in other sources of control (Kay et
al. 2010; Kay et al., 2009; Kay et al., 2008; Lauren, Kay, and Moscovitch 2008). For example,
external control can compensate for internal control. Kay et al. (2008) experimentally
manipulated feelings of personal control by having respondents describe an event in which
they either had complete or no control over the outcome. The authors find that when
individuals feel that they have no control, they become more likely to believe in a controlling
God; conversely, when personal agency increases, beliefs in an all-powerful entity diminish.
This theory explains a phenomenon seen in everyday life, in which people “find” religion in
times of personal hardship. When personal control disappears, for example when a loved
one dies, people compensate by praying to a high power or adopting a belief that everything
has a purpose (Cook and Wemberly 1983; Koeing et al. 1988; Park 2005). Kay et al. (2008)
uncover similar findings when the source of external control is government. Respondents
who wrote about an event in which they had no personal control were more likely to defend
the current political system compared to those who wrote about an event in which they
had complete control. Similar to religious beliefs, decreases in internal control can increase
support for external systems like the government.
Dissonance and the relationship between religion and politics
Elections are external events that can affect an individual’s feelings of control. When a
voter’s preferred party or candidate loses, she cannot change the outcome, yet the result
may upend her expectations about the world. Citizens may respond by trying to resolve
these feelings of cognitive dissonance–arising from events that contradict expectations and
beliefs–by changing their attitudes. Beasley and Joslyn (2001) show that cognitive dissonance
encourages voters who support the losing candidate to moderate their opinions–viewing the
4
winning candidate more favorably and the losing candidate less so–to reduce the dissonance
associated with supporting a loser. However, this strategy has limits. Even if a Republican
who voted for Bush in 1992 moderated her views after the election–seeing Clinton in a more
positive light and Bush more negatively–the (likely Republican) voter still almost certainly
continues to feel more favorably toward Bush than Clinton. Put another way, a partisan
may moderate her attitudes, but it is unlikely that this strategy would resolve the cognitive
dissonance resulting from her party’s loss.
As an alternative, voters may try to address dissonant cognitions that arise in response
to political events through compensatory control. In the case of an unfavorable election
result, voters lose an important source of external control–government. Rather than com-
pensating for this loss of external control with internal control, voters may instead seek an
alternative source of external control: God. Kay et al. (2010) show that these two common
forms of external control–God and government–are substitutable. The authors find that
belief in a controlling God (supporting the Canadian government) varies after manipulating
respondents’ attitudes about the competence of the Canadian government (likelihood that
a God could intervene in the world’s affairs). Participants updated their beliefs about God
in response to politics. With limited options of reducing dissonance in the political realm,
religion may serve as a coping strategy to reduce anxiety and restore feelings of order. This
version of the compensatory control theory yields a testable hypothesis: If partisans com-
pensate for the political environment with religion, religiosity should decrease when their
party takes control of the government and increase when their party loses control.1
The claim that politics produces ebbs and flows in religiosity diverges sharply from com-
mon conceptions about the relationship between religion and politics. The bulk of American
politics research on religion assumes that religious behaviors stem from stable, preexist-
ing identities that shape how individuals view and engage with politics (e.g., Green 2010;
Layman 2001). A frequent explanation for differing rates of religious observance between1A more detailed discussion of when we might expect to find evidence of compensatory control at different
points in recent American political history is available in the Online Appendix.
5
Democratic and Republican partisans is that attending church (or not) shapes one’s partisan
affiliation. However, by re-conceptualizing religious identity as a constructed social identity
that individuals choose and whose intensity may fluctuate, what is often viewed as a fixed
trait becomes a mutable identity open to politics’ influence.
Other scholars have examined how politics affects religion, but their expectations dif-
fer noticeably from those predicted by the compensatory control theory. Both Hout and
Fischer (2014; 2002) and Patrikios (2013; 2008) claim that the politically polarized reli-
gious environment–linking the Republican Party with evangelical Protestants and religious
conservatives–influences Americans’ religious identification (Hout and Fischer 2014; 2002),
church attendance (Patrikios 2008), and self-categorization into a fused religious-partisan
identity (Patrikios 2013).2 Thus, these scholars expect partisans’ religious identities to move
in only one direction–if a Republican changes her religious identity or involvement, it is to
become more religious, while a Democrat, if she changes, would become less religious. In
stark contrast, the compensatory control theory predicts an ebb and flow of religiosity over
time for members of both parties. Whereas the linkage between religious and politics elites
offers an explanation for why the “God gap”, in which Republicans are more religious than
Democrats on average, may grow, the compensatory control theory provides an explanation
for why this gap varies in size over time.
In the next two sections I present two sets of results testing the compensatory control
hypothesis in the American context. In the first set of results, I present findings from
an original panel dataset that coincides with the 2012 presidential election. I then use
cross-sectional data to more generally show how partisans’ reported levels of religiosity vary
systematically as the party of the president shifts.2Putnam and Campbell (2010) similarly find that when answers to political and religious questions shift
across a two-wave survey, people had changed their religious responses to be “consistent” with their parti-sanship (Democrats providing less religious responses and Republicans providing more religious responses).Though the authors attribute these results to the politically-infused religious landscape, they admit that:“We were initially skeptical of this finding since it seemed implausible that people would hazard the fate oftheir eternal soul over mundane political controversies.” (145).
6
2012 election panel study research design
I estimate the short-term religious consequences of the 2012 presidential election. I do so
using a two-wave Internet panel with respondents recruited by Survey Sampling International
(SSI).3 The first wave occurred just before and the second wave took place just after the
election. A panel study with a narrow time window offers three advantages over traditional
cross-sectional and panel analyses. First, the panel design mitigates concern that Democrats
and Republicans may answer questions differently. If, for example, Republicans feel more
social pressure to attend church regularly, they may overestimate their attendance relative
to Democrats, producing an inaccurately wide gap between Republican and Democrats. In a
panel setting, however, I compare changes over time rather than absolute differences, thereby
accommodating partisans having different response patterns. Second, omitted variable bias
is less of a concern. For an unobserved variable to bias the results, not only must the
omitted variable correlate with both partisanship and religiosity, but it must also correlate
with change in religiosity over the span of a few weeks. If we assume that any unobservable
trait has a constant effect on religiosity over the short period between the survey waves,
then omitted variable bias does not pose a problem. Finally, a panel design with a small
window between the waves is an improvement over panel surveys that have waves months,
or sometimes years, apart. For example, Democrats and Republicans may interpret events
and experience the world differently over an extended period of time. In this case, one
may incorrectly attribute the changes in religious behavior to a presidential election, when
another event actually produces the changes over time. As the window between the two3SSI recruits participants through various online communities, social networks, and website ads. SSI
makes efforts to recruit hard-to-reach groups, such as ethnic minorities and seniors. These potential par-ticipants are then screened and invited into the panel. When deploying a particular survey, SSI randomlyselects panel participants for survey invitations. I did not employ quotas but asked SSI to recruit a targetpopulation that matched the (18 and over) census population on education, gender, age, geography, andincome (based on the premeasured profile characteristics if the respondents). The resulting sample is not aprobability sample, but is a diverse national sample. SSI samples have been used in a number of recent pub-lications in political science (Berinsky, Margolis, and Sances 2014; Kam 2012). The first wave of the surveywas conducted between October 17 and October 31, 2012. The second wave of the survey was conductedbetween November 13 and November 27, 2012.
7
waves of the survey shrinks, it becomes more reasonable to assume that the effect is due to
the presidential election rather than other occurrences between the two waves. The short
time window between the two waves of my data increases the plausibility that I can attribute
the results to the presidential election rather than another event.
Reported church attendance and prayer, two common forms of religious participation,
serve as my two dependent variables of interest. Both are binary yes or no questions. The
church attendance question asked: “Did you, yourself, happen to attend church, synagogue
or mosque in the last seven days, or not?” The prayer question was worded as: “Did you
happen to pray by yourself in the last seven days, or not?”
The purpose of asking about behavior in the past seven days is twofold. First, this
strategy makes it easier for respondents to provide an accurate estimate of their behavior.
For example, in Wave 1 of the study, 27% of respondents reported attending religious services
in the past week. This is consistent with research estimating that approximately a quarter
of Americans attend services in a given week. In contrast, when asked generally about the
frequency of church attendance, 35-40% report attending on a weekly basis. Second, these
questions allow for meaningful comparisons over time to be made. Despite a shift in short-
term behavior, an individual may give the same response to a general behavior question.
Although there is a great deal of consistency in people’s religious behavior, it is not static.
Approximately 10% of respondents gave different responses to these questions between the
two waves. I estimate whether any of this movement is attributable to partisanship by
running a change model in which the dependent variable is religious participation in the
post-election survey and the independent variables are pre-election measures of partisan-
ship, religious participation, and individual-level control variables. These control measures
include: gender, three race dummy variables for African American, Hispanic, and other
races (whites serve as the reference category), income, education, and geographic region.
The model specification allows me to estimate the change in reported religious behavior for
Republicans relative to the same change for Democrats. I additionally replicate the findings
8
using religious beliefs and identification in the Online Appendix.4
I use these data to estimate how partisans reacted to Obama’s re-election. His victory,
however, was not a foregone conclusion. Table 1 illustrates that partisanship and outcome
predictions (both measured in Wave 1) are highly correlated. 55% of Republicans thought
Romney would win, and 82% of Republicans either believed Romney would win or were
uncertain about the outcome. As such, the election outcome changed the political land-
scape of many Republicans who were either unsure about the election outcome or predicted
incorrectly.
I use this predicted election outcome measure to more explicitly to test the compensatory
control theory. Drawing on the psychological theory, I expect the partisan effect on changing
religious practices to be moderated by expectations of the outcome. The political landscape
remained the same for those who expected an Obama victory, but shifted for those who
believed Romney would win. A second set of models includes a variable that captures
predictions for the 2012 election and ranges from 1 (Romney will definitely win) to 5 (Obama
will definitely win) and is interacted with the two partisanship measures.
2012 election panel study results
Table 2 presents the logit coefficients for the main independent variables of interest, with
the full results available in the Online Appendix. Republicans, as compared to Democrats,
became more likely to report engaging in religious activity in the weeks after the election as
compared to the weeks leading up to the election. Independents are indistinguishable from
Democrats with respect to changing religious behavior. This result makes intuitive sense.
The political landscape did not change for Democrats and political Independents have a
weaker attachment to the political parties. As such, there is no reason to expect a religious4The dependent variables in the study correspond to Green’s (2010) typology of religious identity con-
sisting of behaving, believing, and belonging. The dependent variables described in the main text of thepaper–church attendance and prayer–correspond to traditional religious behaviors described by Green (49).The study, however, also includes dependent variables that focus on beliefs and identification as well. Idescribe these dependent variables in detail and replicate the results using the alternative measures in theOnline Appendix.
9
divergence between Democrats and Independents over the course of a few weeks.5
Table 3 offers a substantive interpretation for an “average” respondent.6 For both models,
I set the lagged dependent variable to 0; the respondent did not report attending religious
services or praying in the week before Wave 1 of the survey.7 First, I present the predicted
probability that the average Independent respondent reported attending church (4.3%) or
praying (16.3%) in the week leading up to the second wave of the survey. Next, I look
at changes in reported religious behavior based on partisanship. For the same average
respondent, shifting from being a Democrat to a Republican is expected to increase the
probability of attending religious services by an additional 2.7% and praying by 7.8%. The
larger effect for praying likely reflects that praying can be done alone, at any time, and
anywhere, whereas there are higher costs associated with attending church. Although many
Democrats and Republicans alike skipped church and did not pray in the weeks leading up
to the presidential election, their behaviors diverged immediately afterward.8
The first set of analyses demonstrates that Democrats and Republicans reacted differently
to the presidential election, but Obama’s re-election did not change the political landscape.
I incorporate Wave 1’s predicted election outcome measure into the model to test whether
perceived shifts in political control explain the overall findings. Republicans who correctly
predicted that Obama would win the election should experience less movement across the
waves relative to Republicans who believed that Romney would win the election. Table 4
presents the substantive results from the models. Republicans believing Romney would win
the election drive the findings from Tables 2 and 3. For this group, the predicted probability
of an “average” respondent attending church and praying in the weeks after the election5There is also evidence of changing religious practices when comparing Independents and Republicans.
Republicans are more likely to change both their church going (p-value=0.12) and prayer (p-value=0.14)responses relative to Independents.
6In this sample, average refers to a 48-year-old white woman living in the Midwest with some collegeeducation and a household income between the 25% and 50% percentile.
762% and 76% of Republicans and Democrats, respectively, reported not having attended in the weekbefore the first wave of the survey, while 25% and 37% reported not having prayed in the week before thefirst wave of the survey.
8Additional analyses using predicted probabilities and marginal effects for different types of people areavailable in the Online Appendix.
10
were 9.7% and 34.9%, respectively. The probability of engaging in these religious behaviors,
however, was significantly lower for those Republicans who predicted that Obama would
win the election (2.3% for church attendance and 17.6% for praying). These findings are
consistent with Republicans compensating for a disappointing political result by going to
church or praying.
An alternative interpretation of the predicted election outcome question still yields ev-
idence supporting the compensatory control theory. Respondents may have answered the
predicted outcome question by reporting who they wanted to be president, rather than whom
they thought would be president. In this case, the results can be interpreted as changes in
the religious behavior based on preferred elected outcome while holding partisanship con-
stant. In this case, Republicans who strongly wanted Romney to win (and responded by
saying Romney would definitely win) had more reason to compensate with religion after the
election as compared to Republicans who were not as supportive of Romney’s presidential
bid.9
The panel results demonstrate the short-term consequences from a recent election; how-
ever, the findings leave two issues unaddressed. First, how long do these effects last? The
results demonstrate an immediate reaction to an election outcome, but provide no indication
of whether the shift is temporary or more long lasting. Second, are these findings gener-
alizable, or are they specific to Obama’s victory? To answer these questions, I adopt an
alternative research strategy below.
Cross-sectional research design
In this section, I analyze cross-sectional, cross-time variations in reported religiosity. Rather
than looking at the same respondents directly before and after an election, I instead use the
party of the president to measure changes in the political landscape. While the government9Additional robustness checks for two alternative explanations, Hurricane Sandy and seasonal changes in
religiosity, are available in the Online Appendix.
11
as an institution does not change, those in charge of the government do. With each shift in
the party of the president, I test whether reported levels of religiosity fluctuate based on who
is in the White House.10 I employ a difference-in-difference model that looks at respondents
in the years directly preceding and succeeding a change in the party of the president:
DVit = β1Repit + β2Indit + β3Switcht + β4SwitchtXRepit + β5SwitchtXIndit + uit
in which DVit is one of three measures of religiosity, described below, for individual i
in year t. The party identification of respondents is represented by dummy variables for
Republicans and Independents. Democrats are excluded as the reference category. Switcht
is an indicator for whether respondents were interviewed before the switch (0) or after the
switch (1). For example, when looking at a model that compares respondents interviewed
when H.W. Bush was president and when Clinton was president, the Bush years are coded
as 0 while the Clinton years are coded as 1. When comparing the shift between the Clinton
and W. Bush presidencies, however, respondents interviewed when Clinton was president
are categorized as 0, while those interviewed when W. Bush was president are categorized
as 1. Both party dummy variables are interacted with the Switcht indicator, represented
by SwitchtXRepit and SwitchtXIndit, respectively. Given that certain demographic traits
are strong predictors of both partisan loyalties and religiosity, I include a series of micro-
level covariates including: age, age-squared, gender, race, region of residence, education,
household income, and religious affiliation. I also include linear time trends to account for
general changes in religiosity over time.11
10Party of the president is the most visible and accessible representation of the political environment.Although 85% and 84% of Americans can identify the party to which Reagan and Clinton belonged, respec-tively, only 61% and 55% could do the same for Nancy Pelosi and John Boehner (Pew 2012). AlthoughKeele (2005) finds evidence that switches in party control of the House of Representatives and the Senateaffect partisans’ trust, the results for party of the president are between three and six times larger thanfor switches in congressional power, and switches in congressional power do not always produce statisticallysignificant results.
11As a robustness check, I run models interacting each control variable with Switcht to allow the controlvariables’ effects to vary before and after the switch in political control. These results produce substantively
12
I present the results for three questions tapping into religiosity that are routinely asked
in the ANES. The first measures religious behavior through reported church attendance. I
rescaled the variable to range between 0 (never attend) to 1 (attend more than once a week).12
The second measures how much guidance religion plays in a respondent’s life, and ranges from
not at all (0) to a great deal (1).13 The final measure captures whether respondents identify
with a religious tradition (1) or not (0). Here, the specific denomination does not matter.
I instead care about whether respondents identify with a religious tradition at all. The
final dependent variable may be surprising to those who assume religious identification is a
stable characteristic, but scholars have long noted that denominational switching is common
(Arnett and Jensen 2002; Bibby 1997; Newport 1979; Sherkat andWilson 1995; Stump 1984).
More recently, Lim, MacGregor, and Putnam (2010) introduced liminal nones who are not
stable religious non-identifiers, but are also not stable religious affiliates. These individuals,
who can be thought of leaners, have weak religious attachments leading them to identify
with a religious tradition at some points, but not at others. Based on the compensatory
control theory, we might expect partisans’ political surroundings to affect liminal nones’
affiliation decisions.14 I present the results for the three most recent shifts in the party of
the president–H.W. Bush to Clinton, Clinton to W. Bush, and W. Bush to Obama–below.
I present and discuss the results for earlier presidential transitions in the Online Appendix.
similar results and are available in the Online Appendix.12The church attendance measure is created using three questions. The first asks: “Lots of things come up
that keep people from attending religious services even if they want to. Thinking about your life these days,do you ever attend religious services, apart from occasional weddings, baptisms or funerals?” (if respondentanswers yes) “Do you go to religious services every week, almost every week, once or twice a month, a fewtimes a year, or never?” (if respondent says she goes to church every week) “Would you say you go toreligious services once a week or more often than once a week?” The questions produce a six-point scale.
13The religious guidance question comes from two questions. Respondents are first asked, “Do you considerreligion to be an important part of your life, or not?” (if respondent answers that religion is an importantpart of her life) “Would you say that (1996 and later: “Would you say your”) religion provides some guidancein your day-to-day living, quite a bit of guidance, or a great deal of guidance in your day-to-day living (1996and later “life”?) The questions produce a four-point scale.
14This dependent variable presents a difficult test of the theory, as religious identification elicits more stablesurvey responses than other religiosity questions. Further, Lim, MacGregor, and Putnam estimate the 30%of religious non-identifiers, or 10% of the population, can be classified as liminal nones. Consequently, thepercentage of respondents who would potentially move in and out of identifying with a religious tradition issmall, making it difficult to detect an effect.
13
Cross-sectional results
I present the main results in Table 5 both with and without control variables. The co-
efficients are from ordinary least squares (OLS) models; however, ordered logit and logit
models produce the same substantive results. The model specification allows for a simple
interpretation of results, as the coefficients represent the change in the probability that Y=1.
The top set of results looks at respondents interviewed when George H.W. Bush and Bill
Clinton were president. In this case, the Switch variable moves from 0, when H.W. Bush
is president, to 1, when Clinton is president. The Republican and Independent coefficients
represent how Republicans’ and Independents’ reported religiosities differ from Democrats
when H.W. Bush was president (Switch = 0). Although Republicans are no more likely
to attend church (Column 1) and report that religion provides guidance in their daily lives
(Column 3) in the models without control variables, religious differences emerge in the mod-
els that include control variables (Columns 2 and 4). In neither model specification is there
a difference between Republicans and Democrats on rates of religious identification when
H.W. Bush was president (Columns 5 and 6). Although a consistent religiosity gap exists
today between Democrats and Republicans, there was not such a prominent gap between the
parties in the late 1980s. Independents, on the other hand, are generally less religious than
both Democrats and Republicans. This is consistent with the notion that Independents are
considered “not joiners.”
The Switch coefficient in the top panel of Table 5 represents the marginal change in
religiosity for Democrats moving from a Republican president, H.W. Bush (Switch=0) to
a Democratic president, Clinton (Switch=1). Across the three dependent variables, Demo-
cratic religiosity generally declined, although the results are not always statistically signifi-
cant. For example, Democrats were 3% less likely to attend church weekly when Clinton was
president compared to when H.W. Bush was president in the parsimonious model that ex-
cludes control variables (Column 1). Although instructive, looking at Democratic over-time
change in isolation is of limited use. Many external factors likely influence both Democrats’
14
and Republicans’ religiosity. As such, the Switch variable captures both general trends as
well as any Democratic shift occurring because the party of the president changed. Instead,
the interaction terms test how partisans of different stripes changed over time.
I find that Republicans’ and Democrats’ religious trajectories differed before and after
the 1992 election: Republicans became more involved in religion after Clinton took office
relative to Democrats’ over-time changes (Rep X Switch). Again, looking at church atten-
dance in Column 1, Republicans became 6% more likely to attend church more than once
a week relative to Democrats during the same shift. When looking at the political shift be-
tween H.W. Bush and Clinton, Republicans and Democrats diverged in all three religiosity
questions.15
To put these results in context, I ran the same interaction model using perceptions of
the economy over the past year as the dependent variable, which ranged from “has gotten
much worse” (0) to “has gotten much better” (1). We have long known that the party of
the president colors partisans’ responses to survey questions about the economy, provid-
ing a benchmark against which we can assess the magnitude of the religious results. The
interaction on Rep X Switch produced a coefficient of -0.11 (p-value<0.01), meaning that
Republicans and Democrats differed in their economic evaluations as the country switched
from a Republican to a Democratic president: Republicans became 11% less likely to report
that the economy has gotten much better relative to Democrats. The religious dependent
variables–with Rep X Switch coefficients ranging from 0.04 to 0.06–produce results that are
roughly half the size of the economic perception model. That the effect sizes for religious
dependent variables are smaller should be expected. After all, there are many who will and
will not attend church irrespective of their surroundings, political or otherwise. But the com-15The results for church attendance and religious guidance are consistent with Democrats and Republicans
having, on average, stable responses across time, but with Democrats’ religiosity decreasing slightly andRepublicans’ religiosity increasing slightly, together creating the gap found in Rep X Switch. The results forreligious identification, however, show that non-identification rates increased during this time period amongboth Democrats and Republicans but that non-identification rates increased more among Democrats thanRepublicans. This result is consistent with a broader trend of religious disaffiliation that began in the early1990s.
15
parison demonstrates that the changes in reported religious practices and identification are
substantively meaningful. Given that perceptions of the economy serve as the quintessen-
tial example of biased perceptions along partisan lines (see Gerber and Huber (2010) for a
discussion), movement on presumably stable religious variables that is roughly half that of
economic perceptions is remarkable.
These results present a first look at partisan reactions to the party of the president
changing; however, these findings are also consistent with the alternative explanation that
Democrats and Republicans are changing their religious habits to be “consistent” with their
chosen party (Patrikios 2008; Putnam and Campbell 2010). With the Republican Party
seen as the party for the religious while the Democratic Party is perceived as the home
for seculars, if partisans updated their reported religiosity to be aligned with their political
affiliation we would expect Democrats (Republicans) to become less (more) religious over
time.
The second set of results (middle panel of Table 5) diverges from the previous literature
and demonstrates that partisans’ religiosity can ebb and flow. Here, I look for changes as the
party of the president shifts from Clinton, a Democrat, to W. Bush, a Republican. In this
case the results switch directions. Despite Republicans being more religious than Democrats
both when Clinton and W. Bush were president, the religious gap between Republicans and
Democrats that had expanded during Clinton’s presidency actually became smaller when
W. Bush was president (Rep X Switch). The current explanation in the literature for how
politics affects religiosity assumes that religiosity shifts in a unidirectional manner. This
explanation therefore does not predict a shrinking of the religious gap, which is precisely
what I find. The second set of cross-sectional findings comports with the compensatory
control theory, with partisans altering their religious involvement based, in part, on their
surroundings.
The bottom panel of results looks at the shift between W. Bush, a Republican, and
Obama, a Democrat. These results look similar to the shift between H.W. Bush and Clinton:
16
Democrats became less religious over time while Republicans became more so. Across the
three shifts in political control since the 1980s, partisans’ religiosity changed in concert with
the political environment.
Consistent with the panel data, I do not find evidence that party shifts in control influ-
enced political Independents. The model specification interacts being a political Independent
and a political switch (Ind X Switch), and some of these coefficients are significant in Table
5. Democrats changing their reported religiosity, not Independents, however, drive these
results. The marginal effect of a political switch on Independents is consistently small and
statistically insignificant. Although Republicans’ and Democrats’ religious responses shift,
Independents remain relatively stable in response to changing political conditions.
The cross-sectional results replicate the immediate, short-term responses found in the
panel data using data collected years after a presidential election took place. Not only do
the panel findings show that Republicans became more likely to report attending church and
praying in the weeks after the presidential election, the observational data show that these
initial reactions do not dissipate quickly. Rather, elections have long-term consequences on
reported religious responses.
The cross-sectional results corroborate and expand the panel results; however, alternative
explanations must be addressed. First, the party of the president may not be exogenous.
The models above assume that individuals have a stable partisan identification and their
reported religious behaviors vary as the party of the president shifts. This assumption would
be invalid if, for example, membership in the Democratic Party increased under a popular
Democratic President. Although I cannot rule out this possibility, the literature on partisan
stability indicates that this does not often occur. Individual-level party identification remains
more or less constant, even as individuals shift their perceptions about which party is better
able to handle the issues of the day (Gerber and Green 1998), during times of political and
economic turmoil (Schickler and Green 1997), and retrospective assessments of presidential
performance or ideological proximity to candidates (Schickler and Green 1995).
17
Second, the models are susceptible to reverse causation. Although it is likely that church
attendance influences partisanship generally, it is less of a concern with the current model
specification. In order to produce the results presented above, frequent church attenders
would have to become Democratic under a Republican president. Although I cannot rule
out the possibility, a look at the data reduces such concerns. During H.W. Bush’s presidency,
30% of weekly church attenders identified as Republicans. This percentage increased to 36%
while Clinton was in office and increased again to 41% when W. Bush occupied the White
House. These data do not support reverse causation being a serious problem. A third
concern relates to an unmeasured variable affecting both partisanship and reported church
attendance. To pose a problem for my results, an unmeasured confounder must not only
impact both partisanship and reported religiosity, but the direction of this influence must
vary systematically with the party of the president.
Discussion and conclusion
This paper tests politics’ ability to impact seemingly apolitical identities and broadens our
understanding about the relationship between religion and politics. The SSI panel data
demonstrates the short-term effects of a single election. With two waves of data gathered in
a small window of time, I identify the effect that the 2012 election had on partisans’ reported
religious practices. Republicans responded to the election results with an increase in church
attendance and prayer relative to Democrats. The ANES data build on these findings to
look across time and presidencies. Both Democrats and Republicans respond to changes in
political control by systematically shifting their religious involvement. These results are the
first to demonstrate that political identities and the political landscape can cause religiosity
to ebb and flow. Although each data source and analytic method has benefits and drawbacks,
one set of results corroborates and bolsters the other: politics can shape partisans’ reported
religious beliefs and behaviors.
18
Although some may find these results surprising, the psychology literature gives us reason
to expect these findings. Building on cognitive dissonance research, this article explores
what happens when partisans feel psychological discomfort but cannot fully address the
offending inconsistencies. Although a partisan may reduce dissonance stemming from her
candidate losing an election by updating her views of the candidates (Beasley and Joslyn
2001), mental gymnastics can only take a partisan so far. After all, partisan attachments are
strong, enduring identities (Green, Palmquist, and Schickler 2002). Instead, when partisans
are ill at ease in the political realm they may seek solace elsewhere. Religion, in the form
of praying, attending services, or believing in a higher power, is one arena that may offer
comfort.
This paper contributes to three ongoing discussions in the literature: partisan identity,
cognitive dissonance, and the relationship between religion and politics. First, the findings
add to a body of research showing that partisanship’s reach is felt beyond policy preferences
and vote choice. Partisans not only view their surroundings in a more positive light–whether
in assessing the state of the economy, believing that their vote mattered, or trusting the
government–when a co-partisan is in the White House (Bartels 2006; 2002; 2002; Evans and
Anderson 2006; Keele 2005; Lewis-Beck et al. 2008; Sances and Stewart 2012), but these
views translate into actual behaviors like spending decisions (Gerber and Huber 2010; 2009).
Just as partisans spend less when the out-party is in power in response to (perceptions of) a
weaker economy, partisans also compensate for an unfavorable political climate using religion.
On account of partisanship operating as a powerful social identity, elections cross the dividing
line from affecting political attitudes to shaping apolitical behaviors. The results from this
paper also highlight that identity’s role in politics is not as straightforward as previously
thought; identity strength and intensity are also products of politics. Public opinion scholars,
who generally focus on the political consequences of holding a particular identity, must
therefore also consider how an identity develops and becomes politically relevant.
Second, the compensatory control theory offers political scientists a new way to think
19
about cognitive dissonance within politics. Although cognitive dissonance is commonly con-
ceptualized as internal discomfort that can be eliminated by a person changing her behavior
or attitude (Beasley and Joslyn 2001; Mullainathan and Washington 2009), creating cogni-
tive consonance is not always within a person’s power (Randles 2015). This is likely the case
in many political situations, such as elections and policy creation, in which individuals have
virtually no control over the outcome. And in part because partisan identities are strong,
citizens may attempt to resolve this dissonance using alternative strategies.
Future research can build on this work to explore how voters curb politically-induced
dissonance in other, apolitical, ways. Although this paper looks at religion as a means of
reducing dissonance, the proposed mechanism is broadly applicable. For example, the men-
tally palliative qualities of exercise and meditation are well known (Penedo and Dahn 2005).
Exercise may therefore be another compensating strategy on which partisans rely. Psychol-
ogists have also noted that control can originate internally, and increased personal agency
can accommodate a reduction in external control. Additional research on this question will
provide for a more complete understanding of how partisans respond to external political
events.
Third, this paper encourages political scientists to rethink the relationship between reli-
gious and political identities. Experimental research has found that political messages can
activate existing identities, which, in turn, can change policy preferences (e.g., Klar 2013;
Kuklinksi and Hurley 1994). This paper extends that argument by showing that politics can
do more than increase the salience of an identity; politics can change fundamentally shape
identities. Comparative scholars have long argued that politics play an important part in
constructing ethnic identities (Davis 1991; Laitin 1986; Nagel 1994; Nobles 2000; Posner
2005; Waters 1990). In much the same vein, I show that religious identities are, in part,
politically constructed. Rather than thinking about religion as an immutable identity, the
theory and empirics in this article highlight that religion is more accurately conceptualized
as a social identity open to external influence.
20
Although the idea that politics may affect a person’s religious identity is gaining ac-
ceptance in political science, the proposed mechanism in this paper produces a unique set
of expectations and subsequent implications. To date, research looking at how politics af-
fects religion has focused on the close, visible relationship between the Republican Party
and religious conservatives and evangelicals, sometimes referred to as the “religious-political
hypothesis” (Hout and Fischer 2014; 2002; Patrikios 2013; 2008; Putnam and Campbell
2010). This hypothesis assumes that if partisans update their religiosity, Republicans do so
to become more religious and Democrats become less so. Further, it suggests a reinforcing
implication: Republicans reach out to religious voters, religious voters help get a Republican
candidate elected, partisans see and internalize the linkage between conservative politics and
religion, and partisans respond accordingly by updating their religiosity. This cycle changes
the religious landscape for the next election by creating a more religiously homogenous base
from which Republican candidates can mobilize.
In contrast, the compensatory control mechanism suggests a very different understanding
of religion and politics. The ebb and flow predictions generated by a dissonance-reduction
mechanism do not restrict the direction in which a partisan’s religiosity can shift. Moreover,
the compensatory control theory suggests that the link between politics and religion may not
be reinforcing. After religious voters help get a Republican candidate elected, Democrats may
seek solace by returning to church. In this case, the in-party’s electoral successes increases
the out-party’s relative presence in church. In the following election, therefore, Republican
candidates confront a more politically diverse religious landscape than when they first won
power.
The compensatory control mechanism identified here suggests that the current concep-
tualization of how politics affects religion is incomplete, but not necessarily incorrect. It
is possible, even likely, that partisans update their religious outlooks to be consistent with
their chosen political identity while also compensating for their party’s electoral misfortunes
in the religious sphere. Future research should bring together the two proposed mechanisms
21
and isolate each theory’s effects. By understanding the different ways in which politics can
influence religious decisions, scholars will have a better understanding of both the religious
and political landscapes.
22
References
Arnett, Jeffrey J., and Lene A. Jensen. 2002. “A Congregation of One: Individualized
Religious Beliefs among Emerging Adults.” Journal of Adolescent Research 17: 451-467.
Aronson, Elliot, and Judson Mills. 1959. “The Effect of Severity of Initiation on Liking for
a Group.” The Journal of Abnormal and Social Psychology 59: 177-181.
Bartels, Larry. 2002. “Beyond the Running Tally: Partisan Bias in Political Perceptions.”
Political Behavior 24: 117-150.
Beasley, Ryan K., and Mark R. Joslyn. 2001. “Cognitive Dissonance and Post-Decision
Attitude Change in Six Presidential Elections.” Political Psychology 22: 521-540.
Berinsky, Adam J., Michele F. Margolis, Michael W. Sances. 2014. “Separating the Shirk-
ers from the Workers? Making Sure Respondents Pay Attention on Self-Administered
Surveys.” American Journal of Political Science 58: 739-753.
Bibby, Reginald W. 1997. “Going, Going Gone: The Impact of Geographical Mobility on
Religious Involvement.” Review of Religious Research 38: 289-307.
Cook, Judith. A., and Dale W. Wimberley. 1983. “If I Should Die Before I Wake: Religious
Commitment and Adjustment to the Death of a Child.” Journal for the Scientific Study
of Religion 22: 222-238.
Davis, F. James. 1991. Who is Black? One Nation’s Definition. University Park: Pennsyl-
vania University Press.
Evans, Geoffrey, and Robert Anderson. 2006. “The Political Conditioning of Economic
Perceptions.” Journal of Politics 69: 194-207.
Festinger, Leon. 1957. A Theory of Cognitive Dissonance. Stanford, CA: Stanford University
Press.
Gerber, Alan, and Donald P. Green 1998. “Rational Learning and Partisan Attitudes.”
American Journal of Political Science 42: 794-818.
Gerber, Alan, and Gregory Huber. 2010. “Partisanship, Political Control, and Economic
Assessments.” American Journal of Political Science 54: 153-173.
23
Gerber, Alan, and Gregory Huber. 2009. “Partisanship and Economic Behavior: Do Partisan
Differences in Economic Forecasts Predict Real Economic Behavior?” American Political
Science Review 103: 407-426.
Green, Donald, Bradley Palmquist, and Eric Schickler. 2002. Partisan Hearts and Minds:
Political Parties and the Social Identities of Voters. New Haven, CT: Yale University
Press.
Green, John C. 2010. The Faith Factor: How Religion Influences American Elections. Wash-
ington, DC: Potomac Books, Inc.
Harmon-Jones, Eddie, David M. Amodio, and Cindy Harmon-Jones. 2009. “Action-Based
Model of Dissonance: A Review, Integration, and Expansion of Conceptions of Cognitive
Conflict.” Advances in Experimental Social Psychology 41: 119-166.
Hout, Michael, and Claude S. Fischer. 2014. “Explaining Why More Americans Have
No Religious Preference: Political Backlash and Generational Succession, 1987-2012.”
Sociological Science 1: 423-447.
Hout, Michael, and Claude S. Fischer. 2002. “Why More Americans Have No Religious
Preference: Politics and Generations.” American Sociological Review 67: 165-190.
Jost, John T., and Mahzarin R. Banaji, 1994. “The Role of Stereotyping in System Justifi-
cation and the Production of False Consciousness.” British Journal of Social Psychology
33: 1-27.
Jost, John T., Mahzarin R. Banaji, and Brian A. Nosek 2004. “A Decade of System Justi-
fication Theory: Accumulated Evidence of Conscious and Unconscious Bolstering of the
Status Quo.” Political Psychology 25: 881-919.
Kam, Cindy. 2012. “Risk Attitudes and Political Participation.” American Journal of
Political Science 56: 817-736.
Kay, Aaron C., Craig W. Blatz, Adam D. Galinsky, Steven Shepherd, and Sook Ning Chua.
2010. “For God (or) Country: The Hydraulic Relation Between Government Instability
and Belief in Religious Sources of Control.” Journal of Personality and Social Psycholog
24
99: 725-739.
Kay, Aaron C., Danielle Gaucher, Jamie L. Napier, Mitchell J. Callan, and Kristin Laurin.
2008.“God and the Government: Testing a Compensatory Control Mechanism for the
Support of External Systems. Journal of Personality and Social Psychology 95: 18-35.
Kay, Aaron, Jennifer A. Whitson, Danielle Gaucher, and Adam D. Galinsky. 2009. “Com-
pensatory Control: Achieving Order Through the Mind, our Institutions, and the Heav-
ens.” Current Direction in Psychological Science 18: 264-268.
Keele, Luke J. 2005. “The Partisan Roots of Trust in Government.” Journal of Politics 67:
432-451.
King, Gary, Michael Tomz, and Jason Wittenberg. 2000. “Making the Most of Statsitical
Analyses. Improving Interpretation and Presentation.” American Journal of Political
Science 44: 347-363.
Klar, Samara. 2013. “The Influence of Competing Identity Primes on Political Preferences.”
The Journal of Politics 75: 1108-1124.
Koenig, Harold G., Linda K. George, and Ilene C. Siegler. 1998. “The Use of Religion and
Other Emotion-Regulating Coping Strategies Among Older Adults.” The Gerontologist
28: 303-310.
Kuklinski, James H., and Norman L. Hurley. 1994. “On Hearing and Interpreting Political
Messages: A Cautionary Tale of Citizen Cue-Taking.” The Journal of Politics 56: 729-
751.
Laitin, David. 1986. Hegemony and Culture: The Politics of Religious Change Among the
Yoruba. Chicago: University of Chicago Press.
Laurin, Kristin, Aaron C. Kay, and David A. Moscovitch. 2008. “On the Belief in God: To-
wards an Understanding of the Emotional Substrates of Compensatory Control.” Journal
of Experimental Social Psychology 44: 1559-1562.
Layman, Geoffrey C. 2001. The Great Divide: Religious and Cultural Conflict in American
Party Politics. New York: Columbia University Press.
25
Lewis-Beck, Michael S., William G. Jacoby, Helmut Norpoth, and Herbert Weisberg. 2008.
The American Voter Revisited. Ann Arbor: University of Michigan Press.
Lim, Chaeyoon, Carol Ann MacGregor, and Robert D. Putnam. 2010. “Secular and Liminal:
Discovering Heterogeneity Among Religious Nones.” Journal for the Scientific Study of
Religion 49: 596-618.
Mullainathan, Sendhil, and Ebonya Washington. 2009. “Sticking With Your Vote: Cognitive
Dissonance and Voting.” American Economics Journal: Applied Economics 1: 86-111.
Nagel, Joane. 1994. “Constructing Ethnicity: Creating and Recreating Ethnic Identity and
Culture.” Social Problems 41(1): 152-176.
Newport, Frank. 1979. “The Religious Switcher in the United States.” American Sociological
Review 31: 122-34.
Nobles, Melissa. 2000. Shades of Citizenship: Race and the Census in Modern Politics.
Stanford: Stanford University Press.
Norris, Pippa, and Ronald Inglehart. 2004. Sacred and Secular: Religion and Politics
Worldwide. Cambridge, UK: Cambridge University Press.
Park, Crystal L. 2005. “Religion as a Meaning-Making Framework in Coping with Life
Stress. Journal of Social Issues 61, 707-729.
Patrikios, Stratos. 2013. “Self-Stereotyping as “Evangelical Republican”: An Empirical
Test.” Politics and Religion 6: 800-822.
Patrikios, Stratos. 2008. “American Republican Religion? Disentangling the Causal Link
Between Religion and Politics in the US.” Political Behavior 30: 367-389.
Penedo, Frank J., and Jason R. Dahn. 2005. “Exercise and Well-Being: A Review of Mental
and Physical Health Benefits Associated with Physical Activity.” Current Opinion in
Psychiatry 18: 189-193.
Pew Research. 2012. “What the Public Knows about the Political Parties.” Retrieved from
http://www.people-press.org/2012/04/11/what-the-public-knows-about-the-political-parties/
Posner, Daniel. 2005. Institutions and Ethnic Politics in Africa. New York: Cambridge
26
University Press.
Putnam, Robet D., and David E. Campbell. 2010. American Grace: How Religion Divides
and Unites Us. New York: Simon and Schuster.
Randles, Daniel, Michael Inzlicht, Travis Proulx, Alexa M. Tullett, and Steven J. Heine.
2015. “Is Dissonance Reduction a Special Case of Fluid Compensation? Evidence that
Dissonant Cognitions Cause Compensatory Affirmation and Abstraction.” Journal of
Personality and Social Psychology 108: 697-710.
Sances, Michael and Charles Stewart III. 2012. “Partisanship and Voter Confidence, 2000-
2010.” Presented at the Midwest Political Science Association Conference in Chicago,
IL. April 12-15, 2012.
Schickler, Eric, and Donald Philip Green. 1997. “The Stability of Party Identification in
Western Democracies: Results from Eight Panel Studies.” Comparative Political Studies
30: 450-483.
Schickler, Eric, and Donald Philip Green. 1995. “Issue Preferences and the Dynamic of
Party Identification: A Methodological Critique.” In Political Analysis, vol. 5, ed. John
R. Freeman. Ann Arbor: University of Michigan Press.
Sherkat, Darren E., and John Wilson. 1995. “Preferences, Constraints, and Choices in
Religious Switching and Apostasy.” Social Forces 73: 993-1026.
Stump, Roger W. 1984. “Regional Migration and Religious Commitment in the United
States.” Journal for the Scientific Study of Religion 23: 292-303.
Sullivan, Daniel, Mark J. Landau, and Zachary K. Rothschild. 2010. “An Existential Func-
tion of Enemyship: Evidence that People Attribute Influence to Personal and Political
Enemies to Compensate for Threats to Control.” Journal of Personality and Social Psy-
chology 98: 434-449.
Waters, Mary C. 1990. Ethnic Options: Choosing Identities in America. Berkeley, CA:
University of California Press.
Whitson, Jennifer A., and Adam D. Galinsky. 2008. “Lacking Control Increases Illusory
27
Pattern Perception.” Science 332: 115-117.
28
Tables
Table 1: 2012 Election outcome predictionsFull Dems Reps
Certainly Romney 9 1 24Probably Romney 15 3 32Do not know 26 16 27Probably Obama 31 44 15Certainly Obama 19 36 3Total 100% 100% 100%
Note: Cells contain column percentages. Columns may not add up to 100 because of rounding.
29
Table 2: Changes in past week’s church attendance and prayer, Pre- to Post-electionChurch Pray
Republican 0.47** 0.44* 0.41* 0.52**(0.24) (0.25) (0.23) (0.25)
Independent -0.02 0.04 0.02 0.17(0.25) (0.25) (0.22) (0.23)
Controls? Y YConstant -3.00** -2.14* -1.75** -2.38**
(0.20) (1.19) (0.17) (0.92)N 1404 1404 1405 1405Mean DV 0.27 0.27 0.66 0.66Model includes pre-election responses? Y Y Y Y
Note: Robust standard errors in parentheses. * p-value < 0.1, ** p-value < 0.05. Two-tailed test.Democrat is excluded as the partisan reference category. All independent variables are measuredin wave 1.
30
Table 3: Marginal effects for shifts in partisanship from Table 2Church Pray
Probability attended Probability prayedPrediction church past week past week
Baseline prediction 4.3% 16.3%Partisanship = Independent (1.6%, 6.9%) (7.8%, 24.8%)
Marginal effect of shift in partisanship 2.2% 7.8%from Democrat to Republican (0.1%, 4.7%) (1.6%, 15.3%)
Note: Table entries are marginal effect calculations with simulated 90% confidence intervals (King,Tomz, and Wittenberg 2000) in parentheses. The baseline prediction and marginal effects estimatesare created for the average respondent. In this sample, the estimates represent a 48-year-old whitewoman living in the Midwest, with some college education and falls between the 25 and 50% onhousehold income. For both models, the lagged dependent variable is set to 0: the respondentreported not attending religious services and not praying in the previous seven days.
31
Table 4: Republicans thinking Romney would win drive the resultsChurch Pray
Probability attended Probability prayedchurch past week past week
Republican and believed 9.7% 34.9%Romney would win (4.0%, 17.9%) (19.2%, 53.4%)Republican and believed 2.3% 17.6%Obama would win (0.3%, 7.5%) (8.9%, 30.0%)Difference 7.3% 17.3%
(1.0%, 15.6%) (1.5%, 35.1%)Note: Table entries are predicted probabilities with simulated 90% confidence intervals (King,Tomz, and Wittenberg 2000) in parentheses. The estimates are created for the average respondent.In this sample, the estimates represent a 48-year-old white woman living in the Midwest, with somecollege education and falls between the 25 and 50% on household income. For both models, thelagged dependent variable is set to 0: the respondent reported not attending religious services andnot praying in the previous seven days.
32
Table 5: Changes in religiosity over time(1) (2) (3) (4) (5) (6)
H.W. Bush to ClintonChurch Rel guide Rel ID
Republican 0.02 0.05** -0.03 0.04* -0.04 0.01(0.02) (0.02) (0.02) (0.02) (0.03) (0.02)
Independent -0.08** -0.04** -0.09** -0.02 -0.11** -0.08**(0.02) (0.02) (0.02) (0.02) (0.02) (0.02)
Switch -0.03** -0.04* -0.04** -0.04 -0.03 -0.14**(0.02) (0.02) (0.02) (0.03) (0.02) (0.04)
Rep X Switch 0.06** 0.04* 0.06** 0.05** 0.06** 0.06**(0.03) (0.02) (0.03) (0.02) (0.03) (0.03)
Ind X Switch 0.05** 0.04* 0.06** 0.05** 0.07** 0.06**(0.02) (0.02) (0.03) (0.02) (0.03) (0.03)
Controls No Yes No Yes No YesLinear time trends No Yes No Yes No YesIntercept 0.41** -0.78 0.61** 2.83 0.88** -32.68**
(0.01) (6.32) (0.01) (6.85) (0.01) (9.23)N 6,056 6,056 6,030 6,030 4,176 4,176Years 1988-2000 1988-2000 1988-2000
Clinton to W. BushChurch Rel guide Rel ID
Republican 0.08** 0.09** 0.03** 0.09** 0.03 0.06**(0.01) (0.01) (0.01) (0.01) (0.02) (0.02)
Independent -0.03** 0.00 -0.03** 0.02* -0.05** -0.02(0.01) (0.01) (0.01) (0.01) (0.02) (0.02)
Switch 0.04* 0.21** 0.03 0.21* 0.04* -0.18(0.02) (0.10) (0.02) (0.11) (0.02) (0.12)
Rep X Switch -0.13** -0.17** -0.06* -0.16** -0.06** -0.13**(0.03) (0.03) (0.03) (0.03) (0.03) (0.03)
Ind X Switch -0.07** -0.07** -0.05 -0.09** -0.04 -0.04(0.03) (0.03) (0.03) (0.03) (0.03) (0.03)
Controls No Yes No Yes No YesLinear time trends No Yes No Yes No YesConstant 0.38** -0.95 0.57** 2.40 0.85** -33.20**
(0.01) (6.34) (0.01) (6.88) (0.01) (9.30)N 5,365 5,365 5,342 5,342 3,918 3,918Years 1992-2008 1992-2008 1992-2008
W. Bush to ObamaChurch Rel guide Rel ID
Republican -0.06** -0.07** -0.02 -0.06** -0.04 -0.09**(0.03) (0.03) (0.03) (0.03) (0.03) (0.03)
Independent -0.10** -0.07** -0.08** -0.06** -0.09** -0.08**(0.03) (0.02) (0.03) (0.03) (0.03) (0.03)
Switch -0.09** -0.08** -0.08** -0.08** -0.09** -0.13**(0.02) (0.02) (0.02) (0.02) (0.02) (0.02)
Rep X Switch 0.16** 0.16** 0.13** 0.16** 0.11** 0.19**(0.03) (0.03) (0.03) (0.03) (0.03) (0.03)
Ind X Switch 0.05* 0.04 0.02 0.03 0.01 0.04(0.03) (0.03) (0.03) (0.03) (0.03) (0.03)
Controls No Yes No Yes No YesLinear time trends No Yes No Yes No YesConstant 0.42** 0.14** 0.61** 0.21** 0.89** 0.62**
(0.02) (0.04) (0.02) (0.04) (0.02) (0.05)N 6,438 6,438 6,449 6,449 6,461 6,461Years 2000-2012 2000-2012 2000-2012
Note: Coefficients are OLS estimates. Robust standard errors in parentheses. * p-value < 0.1, ** p-value < 0.05. Two-tailed test. Democratis excluded as the partisan reference category. Control variables include: race, age, age-squared, gender, region, income, education, and year.Religious affiliation is also included as control variables in the models using church attendance and religious guidance as the dependent variable.
33